SlideShare una empresa de Scribd logo
1 de 45
Descargar para leer sin conexión
Linux Systems Capacity
Planning
Rodrigo Campos
camposr@gmail.com - @xinu
USENIX LISA ’11 - Boston, MA
Agenda
Where, what, why?
Performance monitoring
Capacity Planning
Putting it all together
Where, what, why ?
75 million internet users
1,419.6% growth (2000-2011)
29% increase in unique IPv4 addresses (2010-2011)
37% population penetration

Sources:
Internet World Stats - http://www.internetworldstats.com/stats15.htm
Akamai’s State of the Internet 2nd Quarter 2011 report - http://www.akamai.com/stateoftheinternet/
Where, what, why ?
High taxes
Shrinking budgets
High Infrastructure costs
Complicated (immature?) procurement processes
Lack of economically feasible hardware options
Lack of technically qualified professionals
Where, what, why ?
Do more with the same infrastructure
Move away from tactical fire fighting
While at it, handle:
Unpredicted traffic spikes
High demand events
Organic growth
Performance Monitoring
Typical system performance metrics
CPU usage
IO rates
Memory usage
Network traffic
Performance Monitoring
Commonly used tools:
Sysstat package - iostat, mpstat et al
Bundled command line utilities - ps, top, uptime
Time series charts (orcallator’s offspring)
Many are based on RRD (cacti, torrus, ganglia,
collectd)
Performance Monitoring
Time series performance data is useful for:
Troubleshooting
Simplistic forecasting
Find trends and seasonal behavior
Performance Monitoring
Performance Monitoring
"Correlation does not imply causation"
Time series methods won’t help you much for:
Create what-if scenarios
Fully understand application behavior
Identify non obvious bottlenecks
Monitoring vs. Modeling
“The difference between performance
modeling and performance monitoring is
like the difference between weather
prediction and simply watching a weathervane twist in the wind”

Source: http://www,perfdynamics,com/Manifesto/gcaprules,html
Capacity Planning
Not exactly something new...
Can we apply the very same techniques to modern,
distributed systems ?
Should we ?
What’s in a queue ?
Agner Krarup Erlang
Invented the fields of traffic engineering and
queuing theory
1909 - Published “The theory of Probabilities
and Telephone Conversations”
What’s in a queue ?

Allan Scherr (1967) used the
machine repairman problem to
represent a timesharing system
with n terminals
What’s in a queue ?
Dr. Leonard Kleinrock
“Queueing Systems” (1975) - ISBN 0471491101
Created the basic principles of packet switching while
at MIT
What’s in a queue ?
(A)
Open/Closed
Network
A

Arrival Count

λ
W

Arrival Rate (A/T)
Time spent in Queue

R

Residence Time (W+S)

S

Service Time

X

System Throughput (C/T)

C

Completed tasks count

λ

S

W
R

X

(C)
Service Time
Time spent in processing (S)
Web server response time
Total Query time
Time spent in IO operation
System Throughput
Arrival rate (λ) and system throughput (X) are the same
in a steady queue system (i.e. stable queue size)
Hits per second
Queries per second
IOPS
Utilization
Utilization (ρ) is the amount of time that a queuing node
(e.g. a server) is busy (B) during the measurement
period (T)
Pretty simple, but helps us to get processor share of an
application using getrusage() output
Important when you have multicore systems

ρ = B/T
Utilization
CPU bound HPC application running in a two core
virtualized system
Every 10 seconds it prints resource utilization data to a
log file
Utilization
(void)getrusage(RUSAGE_SELF, &ru);
(void)printRusage(&ru);
...
static void printRusage(struct rusage *ru)
{
fprintf(stderr, "user time = %lfn",
(double)ru->ru_utime.tv_sec + (double)ru->ru_utime.tv_usec / 1000000);
fprintf(stderr, "system time = %lfn",
(double)ru->ru_stime.tv_sec + (double)ru->ru_stime.tv_usec / 1000000);
} // end of printRusage

10 seconds wallclock time
377,632 jobs done
user time = 7.028439
system time = 0.008000
Utilization
ρ = B/T

We have 2 cores so we
can run 3 application
instances in each server
(200/70.36) = 2.84

ρ = (7.028+0.008) / 10
ρ = 70.36%
Little’s Law
Named after MIT professor John Dutton Conant Little
The long-term average number of customers in a
stable system L is equal to the long-term average
effective arrival rate, λ, multiplied by the average time a
customer spends in the system, W; or expressed
algebraically: L = λW
You can use this to calculate the minimum
amount of spare workers in any application
Little’s Law
L = λW
λ = 120 hits/s

tcpdump -vttttt

W = Round-trip delay + service time
W = 0.01594 + 0.07834 = 0.09428
L = 120 * 0.09428 = 11,31
Utilization and Little’s Law
By substitution, we can get the utilization by multiplying
the arrival rate and the mean service time

ρ = λS
Putting it all together
Applications write in a log file the service time and
throughput for most operations
For Apache:
%D in mod_log_config (microseconds)
“ExtendedStatus On” whenever it’s possible
For nginx:
$request_time in HttpLogModule (milliseconds)
Putting it all together
Putting it all together

Generated with HPA: https://github.com/camposr/HTTP-Performance-Analyzer
Putting it all together
A simple tag collection data store
For each data operation:
A 64 bit counter for the number of calls
An average counter for the service time
Putting it all together
Method

Call Count

Service Time (ms)

dbConnect

1,876

11.2

fetchDatum

19,987,182

12.4

postDatum

1,285,765

98.4

deleteDatum

312,873

31.1

fetchKeys

27,334,983

278.3

fetchCollection

34,873,194

211.9

createCollection

118,853

219.4
Putting it all together
Call Count x Service Time

fetchKeys

Service Time (ms)

createCollection
fetchCollection

deleteDatum

postDatum
dbConnect

fetchDatum
Call Count
Modeling
An abstraction of a complex system
Allows us to observe phenomena that can not be easily
replicated
“Models come from God, data comes from the devil” Neil Gunther, PhD.
Modeling
Clients

Requests

Web Server

Replies

Application

Database
Modeling
Clients

Requests

Cache

Replies

Web Server

Application

Database
Modeling
We’re using PDQ in order to model queue circuits
Freely available at:
http://www.perfdynamics.com/Tools/PDQ.html
Pretty Damn Quick (PDQ) analytically solves queueing
network models of computer and manufacturing
systems, data networks, etc., written in conventional
programming languages.
Modeling
CreateNode()

Define a queuing center

CreateOpen()

Define a traffic stream of an
open circuit

CreateClosed()

Define a traffic stream of a
closed circuit

SetDemand()

Define the service demand for
each of the queuing centers
Modeling
$httpServiceTime = 0.00019;
$appServiceTime = 0.0012;
$dbServiceTime = 0.00099;
$arrivalRate = 18.762;
pdq::Init("Tag Service");
$pdq::nodes = pdq::CreateNode('HTTP Server',
$pdq::CEN, $pdq::FCFS);
$pdq::nodes = pdq::CreateNode('Application Server',
$pdq::CEN, $pdq::FCFS);
$pdq::nodes = pdq::CreateNode('Database Server',
$pdq::CEN, $pdq::FCFS);
Modeling
=======================================
******
PDQ Model OUTPUTS
*******
=======================================
Solution Method: CANON
******

SYSTEM Performance
Value
-----

*******

Metric
-----Workload: "Application"
Number in system
Mean throughput
Response time
Stretch factor

Unit
----

1.3379
18.7620
0.0713
1.5970

Requests
Requests/Seconds
Seconds

Bounds Analysis:
Max throughput
Min response

44.4160
0.0447

Requests/Seconds
Seconds
0.0
009
8"
0.0
010
3"
0.0
010
8"
0.0
011
3"
0.0
011
8"
0.0
012
3"
0.0
012
8"
0.0
013
3"
0.0
013
8"
0.0
014
3"
0.0
014
8"
0.0
015
3"
0.0
015
8"
0.0
016
3"
0.0
016
8"
0.0
017
3"
0.0
017
8"
0.0
018
3"
0.0
018
8"
0.0
019
3"
0.0
019
8"
0.0
020
3"
0.0
020
8"
0.0
021
3"
0.0
021
8"
0.0
022
3"
0.0
022
8"
0.0
023
3"
0.0
023
8"
0.0
024
3"
0.0
024
8"
0.0
025
3"

Systemwide*Requests*/*second*

Modeling
System*Throughput*based*on*Database*Service*Time*

60"

50"

40"

30"

20"

10"

0"

Database*Service*7me*(seconds)*
Modeling
Complete makeover of a web collaborative portal
Moving from a commercial-of-the-shelf platform to a
fully customized in-house solution
How high it will fly?
Modeling
Customer Behavior Model Graph (CBMG)
Analyze user behavior using session logs
Understand user activity and optimize hotspots
Optimize application cache algorithms
Modeling
0.08
Initial
Page

Create
New Topic

0.73

User
Login
0.3

Active
Topics
0.8

Control
Panel

0.6
Private
Messages

0.2

Unanswer
ed Topics

Answer
Topic

0.1
User
Logout

Read
Topic
Modeling
Now we can mimic the user behavior in the newly
developed system
The application was instrumented so we know the
service time for every method
Each node in the CBMG is mapped to the application
methods it is related
References
Using a Queuing Model to Analyze the Performance of
Web Servers - Khaled M. ELLEITHY and Anantha
KOMARALINGAM
A capacity planning / queueing theory primer - Ethan
D. Bolker
Analyzing Computer System Performance with
Perl::PDQ - N. J. Gunther
Computer Measurement Group Public Proceedings
Questions answered here
Thanks for attending !
Rodrigo Campos
camposr@gmail.com
http://twitter.com/xinu
http://capacitricks.posterous.com

Más contenido relacionado

La actualidad más candente

Transfer Learning for Software Performance Analysis: An Exploratory Analysis
Transfer Learning for Software Performance Analysis: An Exploratory AnalysisTransfer Learning for Software Performance Analysis: An Exploratory Analysis
Transfer Learning for Software Performance Analysis: An Exploratory Analysis
Pooyan Jamshidi
 
Improved implementation of a Deadline Monotonic algorithm for aperiodic traff...
Improved implementation of a Deadline Monotonic algorithm for aperiodic traff...Improved implementation of a Deadline Monotonic algorithm for aperiodic traff...
Improved implementation of a Deadline Monotonic algorithm for aperiodic traff...
Andrea Tino
 
Lab 4 final report
Lab 4 final reportLab 4 final report
Lab 4 final report
Kyle Villano
 
CS 6390 Project design report
CS 6390 Project design reportCS 6390 Project design report
CS 6390 Project design report
Abhishek Datta
 
CS 6390 Project design report
CS 6390 Project design reportCS 6390 Project design report
CS 6390 Project design report
Raj Gupta
 

La actualidad más candente (18)

Part 1 : reliable transmission
Part 1 : reliable transmissionPart 1 : reliable transmission
Part 1 : reliable transmission
 
VaMoS 2022 - Transfer Learning across Distinct Software Systems
VaMoS 2022 - Transfer Learning across Distinct Software SystemsVaMoS 2022 - Transfer Learning across Distinct Software Systems
VaMoS 2022 - Transfer Learning across Distinct Software Systems
 
Transfer Learning for Software Performance Analysis: An Exploratory Analysis
Transfer Learning for Software Performance Analysis: An Exploratory AnalysisTransfer Learning for Software Performance Analysis: An Exploratory Analysis
Transfer Learning for Software Performance Analysis: An Exploratory Analysis
 
Transfer Learning for Performance Analysis of Configurable Systems: A Causal ...
Transfer Learning for Performance Analysis of Configurable Systems:A Causal ...Transfer Learning for Performance Analysis of Configurable Systems:A Causal ...
Transfer Learning for Performance Analysis of Configurable Systems: A Causal ...
 
Chapter 1 pc
Chapter 1 pcChapter 1 pc
Chapter 1 pc
 
Fog Computing for Dummies
Fog Computing for Dummies Fog Computing for Dummies
Fog Computing for Dummies
 
Improved implementation of a Deadline Monotonic algorithm for aperiodic traff...
Improved implementation of a Deadline Monotonic algorithm for aperiodic traff...Improved implementation of a Deadline Monotonic algorithm for aperiodic traff...
Improved implementation of a Deadline Monotonic algorithm for aperiodic traff...
 
H04845157
H04845157H04845157
H04845157
 
128-Bit Area Efficient Reconfigurable Carry Select Adder
128-Bit Area Efficient Reconfigurable Carry Select Adder 128-Bit Area Efficient Reconfigurable Carry Select Adder
128-Bit Area Efficient Reconfigurable Carry Select Adder
 
Lab 4 final report
Lab 4 final reportLab 4 final report
Lab 4 final report
 
Computer Networking : Principles, Protocols and Practice - lesson 1
Computer Networking : Principles, Protocols and Practice - lesson 1Computer Networking : Principles, Protocols and Practice - lesson 1
Computer Networking : Principles, Protocols and Practice - lesson 1
 
CS 6390 Project design report
CS 6390 Project design reportCS 6390 Project design report
CS 6390 Project design report
 
Data Streaming (in a Nutshell) ... and Spark's window operations
Data Streaming (in a Nutshell) ... and Spark's window operationsData Streaming (in a Nutshell) ... and Spark's window operations
Data Streaming (in a Nutshell) ... and Spark's window operations
 
CS 6390 Project design report
CS 6390 Project design reportCS 6390 Project design report
CS 6390 Project design report
 
pipeline and vector processing
pipeline and vector processingpipeline and vector processing
pipeline and vector processing
 
From Trill to Quill and Beyond
From Trill to Quill and BeyondFrom Trill to Quill and Beyond
From Trill to Quill and Beyond
 
Chap12 slides
Chap12 slidesChap12 slides
Chap12 slides
 
Chap5 slides
Chap5 slidesChap5 slides
Chap5 slides
 

Similar a Linux capacity planning

Super COMPUTING Journal
Super COMPUTING JournalSuper COMPUTING Journal
Super COMPUTING Journal
Pandey_G
 
Topic2 Understanding Middleware
Topic2 Understanding MiddlewareTopic2 Understanding Middleware
Topic2 Understanding Middleware
sanjoysanyal
 
Scalable Web Technology for the Internet of Things
Scalable Web Technology for the Internet of ThingsScalable Web Technology for the Internet of Things
Scalable Web Technology for the Internet of Things
Matthias Kovatsch
 

Similar a Linux capacity planning (20)

Capacity Planning for Linux Systems
Capacity Planning for Linux SystemsCapacity Planning for Linux Systems
Capacity Planning for Linux Systems
 
Intelligent Monitoring
Intelligent MonitoringIntelligent Monitoring
Intelligent Monitoring
 
Super COMPUTING Journal
Super COMPUTING JournalSuper COMPUTING Journal
Super COMPUTING Journal
 
Telegraph Cq English
Telegraph Cq EnglishTelegraph Cq English
Telegraph Cq English
 
Defense
DefenseDefense
Defense
 
Defense
DefenseDefense
Defense
 
Topic2 Understanding Middleware
Topic2 Understanding MiddlewareTopic2 Understanding Middleware
Topic2 Understanding Middleware
 
SERENE 2014 School: Resilience in Cyber-Physical Systems: Challenges and Oppo...
SERENE 2014 School: Resilience in Cyber-Physical Systems: Challenges and Oppo...SERENE 2014 School: Resilience in Cyber-Physical Systems: Challenges and Oppo...
SERENE 2014 School: Resilience in Cyber-Physical Systems: Challenges and Oppo...
 
SERENE 2014 School: Gabor karsai serene2014_school
SERENE 2014 School: Gabor karsai serene2014_schoolSERENE 2014 School: Gabor karsai serene2014_school
SERENE 2014 School: Gabor karsai serene2014_school
 
Io t data streaming
Io t data streamingIo t data streaming
Io t data streaming
 
Latency-aware Elastic Scaling for Distributed Data Stream Processing Systems
Latency-aware Elastic Scaling for Distributed Data Stream Processing SystemsLatency-aware Elastic Scaling for Distributed Data Stream Processing Systems
Latency-aware Elastic Scaling for Distributed Data Stream Processing Systems
 
Scalable Web Technology for the Internet of Things
Scalable Web Technology for the Internet of ThingsScalable Web Technology for the Internet of Things
Scalable Web Technology for the Internet of Things
 
Exploring the Final Frontier of Data Center Orchestration: Network Elements -...
Exploring the Final Frontier of Data Center Orchestration: Network Elements -...Exploring the Final Frontier of Data Center Orchestration: Network Elements -...
Exploring the Final Frontier of Data Center Orchestration: Network Elements -...
 
Remote Procedure Call
Remote Procedure CallRemote Procedure Call
Remote Procedure Call
 
Observability foundations in dynamically evolving architectures
Observability foundations in dynamically evolving architecturesObservability foundations in dynamically evolving architectures
Observability foundations in dynamically evolving architectures
 
Splunk Conf 2014 - Getting the message
Splunk Conf 2014 - Getting the messageSplunk Conf 2014 - Getting the message
Splunk Conf 2014 - Getting the message
 
HPC Impact: EDA Telemetry Neural Networks
HPC Impact: EDA Telemetry Neural NetworksHPC Impact: EDA Telemetry Neural Networks
HPC Impact: EDA Telemetry Neural Networks
 
ACIT Mumbai - Open Systems Interconnect
ACIT Mumbai - Open Systems InterconnectACIT Mumbai - Open Systems Interconnect
ACIT Mumbai - Open Systems Interconnect
 
ACIT Mumbai - OSI Model
ACIT Mumbai - OSI ModelACIT Mumbai - OSI Model
ACIT Mumbai - OSI Model
 
Network Programming in Java
Network Programming in JavaNetwork Programming in Java
Network Programming in Java
 

Más de Francisco Gonçalves

O rad da wave maker developing for the cloud
O rad da wave maker developing for the cloudO rad da wave maker developing for the cloud
O rad da wave maker developing for the cloud
Francisco Gonçalves
 
Scale out database apps através de galera cluster e maria db
Scale out database apps através de galera cluster e maria dbScale out database apps através de galera cluster e maria db
Scale out database apps através de galera cluster e maria db
Francisco Gonçalves
 
Re pensando-virtualização-através-linux containers
Re pensando-virtualização-através-linux containersRe pensando-virtualização-através-linux containers
Re pensando-virtualização-através-linux containers
Francisco Gonçalves
 
O docker vai mudar tudo na sua infra estrutura-ti
O docker vai mudar tudo na sua infra estrutura-tiO docker vai mudar tudo na sua infra estrutura-ti
O docker vai mudar tudo na sua infra estrutura-ti
Francisco Gonçalves
 
Wavemaker RAD for the Cloud with CloudJee - Future Direction 2014
Wavemaker RAD for the Cloud with CloudJee - Future Direction 2014Wavemaker RAD for the Cloud with CloudJee - Future Direction 2014
Wavemaker RAD for the Cloud with CloudJee - Future Direction 2014
Francisco Gonçalves
 

Más de Francisco Gonçalves (20)

Ulteo virtual desktop system
Ulteo virtual desktop systemUlteo virtual desktop system
Ulteo virtual desktop system
 
O que é o SecondLife? Sabia que este pode catalisar a colaboração na sua empr...
O que é o SecondLife? Sabia que este pode catalisar a colaboração na sua empr...O que é o SecondLife? Sabia que este pode catalisar a colaboração na sua empr...
O que é o SecondLife? Sabia que este pode catalisar a colaboração na sua empr...
 
Porque a-burocracia-deve-morrer
Porque a-burocracia-deve-morrerPorque a-burocracia-deve-morrer
Porque a-burocracia-deve-morrer
 
20140128 webinar-get-more-out-of-mysql-with-tokudb-140319063324-phpapp02
20140128 webinar-get-more-out-of-mysql-with-tokudb-140319063324-phpapp0220140128 webinar-get-more-out-of-mysql-with-tokudb-140319063324-phpapp02
20140128 webinar-get-more-out-of-mysql-with-tokudb-140319063324-phpapp02
 
A automatização e virtualização do seu negócio
A automatização e virtualização do seu negócioA automatização e virtualização do seu negócio
A automatização e virtualização do seu negócio
 
O rad da wave maker developing for the cloud
O rad da wave maker developing for the cloudO rad da wave maker developing for the cloud
O rad da wave maker developing for the cloud
 
Scale out database apps através de galera cluster e maria db
Scale out database apps através de galera cluster e maria dbScale out database apps através de galera cluster e maria db
Scale out database apps através de galera cluster e maria db
 
Re pensando-virtualização-através-linux containers
Re pensando-virtualização-através-linux containersRe pensando-virtualização-através-linux containers
Re pensando-virtualização-através-linux containers
 
O docker vai mudar tudo na sua infra estrutura-ti
O docker vai mudar tudo na sua infra estrutura-tiO docker vai mudar tudo na sua infra estrutura-ti
O docker vai mudar tudo na sua infra estrutura-ti
 
Teamwork Web Application
Teamwork Web ApplicationTeamwork Web Application
Teamwork Web Application
 
Node Js
Node JsNode Js
Node Js
 
Hypervisor "versus" Linux Containers with Docker !
Hypervisor "versus" Linux Containers with Docker !Hypervisor "versus" Linux Containers with Docker !
Hypervisor "versus" Linux Containers with Docker !
 
MariaDB Galera Cluster presentation
MariaDB Galera Cluster presentationMariaDB Galera Cluster presentation
MariaDB Galera Cluster presentation
 
Wavemaker RAD for the Cloud with CloudJee - Future Direction 2014
Wavemaker RAD for the Cloud with CloudJee - Future Direction 2014Wavemaker RAD for the Cloud with CloudJee - Future Direction 2014
Wavemaker RAD for the Cloud with CloudJee - Future Direction 2014
 
Juju on ubuntu cloud
Juju on ubuntu cloudJuju on ubuntu cloud
Juju on ubuntu cloud
 
Cloud foundry and openstackcloud
Cloud foundry and openstackcloudCloud foundry and openstackcloud
Cloud foundry and openstackcloud
 
Ubuntu cloud infrastructures
Ubuntu cloud infrastructuresUbuntu cloud infrastructures
Ubuntu cloud infrastructures
 
Openstack deployment-with ubuntu
Openstack deployment-with ubuntuOpenstack deployment-with ubuntu
Openstack deployment-with ubuntu
 
Desk top virtual_gbanif
Desk top virtual_gbanifDesk top virtual_gbanif
Desk top virtual_gbanif
 
Open Source Vantagens E Beneficios - By Softelabs
Open Source   Vantagens E Beneficios - By SoftelabsOpen Source   Vantagens E Beneficios - By Softelabs
Open Source Vantagens E Beneficios - By Softelabs
 

Último

Why Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businessWhy Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire business
panagenda
 

Último (20)

Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
 
MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024
 
Why Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businessWhy Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire business
 
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot TakeoffStrategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
 
Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin WoodPolkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
 
Partners Life - Insurer Innovation Award 2024
Partners Life - Insurer Innovation Award 2024Partners Life - Insurer Innovation Award 2024
Partners Life - Insurer Innovation Award 2024
 
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, AdobeApidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
 
presentation ICT roal in 21st century education
presentation ICT roal in 21st century educationpresentation ICT roal in 21st century education
presentation ICT roal in 21st century education
 
Data Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt RobisonData Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt Robison
 
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
 
Top 10 Most Downloaded Games on Play Store in 2024
Top 10 Most Downloaded Games on Play Store in 2024Top 10 Most Downloaded Games on Play Store in 2024
Top 10 Most Downloaded Games on Play Store in 2024
 
Scaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organizationScaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organization
 
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdfUnderstanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
 
Top 5 Benefits OF Using Muvi Live Paywall For Live Streams
Top 5 Benefits OF Using Muvi Live Paywall For Live StreamsTop 5 Benefits OF Using Muvi Live Paywall For Live Streams
Top 5 Benefits OF Using Muvi Live Paywall For Live Streams
 
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
 
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerHow to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
 
GenAI Risks & Security Meetup 01052024.pdf
GenAI Risks & Security Meetup 01052024.pdfGenAI Risks & Security Meetup 01052024.pdf
GenAI Risks & Security Meetup 01052024.pdf
 
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemkeProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
 
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
 
🐬 The future of MySQL is Postgres 🐘
🐬  The future of MySQL is Postgres   🐘🐬  The future of MySQL is Postgres   🐘
🐬 The future of MySQL is Postgres 🐘
 

Linux capacity planning